DATA SCIENCE FOR ECONOMIC AND SOCIAL ISSUES

Course Description

This course explores the integration of economics with data science methodologies, mastering tools and techniques for real-world analysis. Delve into causal estimation methods and data analysis in policy contexts, leveraging machine learning and AI for insightful interpretations. Engage in a collaborative project, culminating in poster presentations.

Course Prerequisites

A solid foundation in Basic Econometrics is required. Familiarity with Python will be beneficial but is not mandatory.

Measurable Learning Outcomes

Textbooks and Resources

No required textbook. Recommended readings include "Data Science with Generative AI for Economic and Social Issues" by M. Jahangir Alam, “Econometric Data Science” by Diebold, “Mostly Harmless Econometrics” by Angrist & Pischke, and “Applied Econometric Time Series” by Enders.

Explore additional course contents like quizzes and problem sets:

Empirical Research Databases

Access an array of databases to enrich your empirical research:

Financial Databases

Labor and Population Data

Macroeconomic and International Data

Development Data

ChatGPT Prompts

Discover the power of ChatGPT Prompts for generating relevant and context-specific responses. These prompts, ranging from questions to commands, are instrumental in deriving meaningful insights from the AI model.

Fundamentals of Data Management: Cleaning, Preprocessing, and Visualization

This section covers the essentials of data management, starting with data cleaning and preprocessing to ensure accuracy and reliability. It delves into techniques for handling missing values, outliers, and errors to prepare datasets for analysis. The section on data visualization emphasizes creating impactful and informative visual representations, enhancing the interpretability of data insights. Additionally, it introduces summary statistics as a pivotal tool for initial data exploration, providing a snapshot of key trends and patterns, vital for informed decision-making in data analysis projects.

Example Prompt: "Could you assist me in obtaining historical stock prices for the ten largest companies by market capitalization from Yahoo Finance, for 2018 to 2023, using VS Code and Jupyter Notebooks? The tasks involve data cleaning and preprocessing to handle missing values, outliers, and errors, visualizing the cleaned data to identify trends and patterns, and generating summary statistics for a detailed dataset overview, aiding initial analysis and decision-making." Here is the ChatGPT responses of this prompt.

Causal Inference

Engage with prompts that delve into causal inference and its applications in data science.

Machine and Deep Learning

Access prompts that assist in understanding and implementing machine and deep learning models.

Natural Language Processing

Investigate prompts focusing on natural language processing and its relevance in data analysis.

Report Writing

Find prompts that guide the process of report writing, from structure to content. Poster Template

Sample Research Projects

Engage in impactful research projects like “News Sentiment and Stock Price: A DeepLearning Approach.” This comprehensive project, involving LSTM networks and sentiment analysis, offers an in-depth study of stock price movements, integrating data science and machine learning for real-world financial insights.